Design of a machine (federated) learning based generalized model for predicting drying kinetics of foods


Erenturk K. Erenturk S.
2025Taylor and Francis Ltd.

CYTA - Journal of Food
2025#23Issue 1

Different from the previously published modeling techniques, the federated learning (FL) approach provides a global modeling tool for obtaining a global model for food drying processes. The main aim of this work is to design a trained federated model for modeling drying processes of different foods. Drying data for carrot, Echinacea Angustifolia, eggplant and mushroom have been used to train FL model to overcome the estimation challenges of different food drying processes using a single and food kind independent architecture. To validate the trained FL model, apple and strawberry drying data have been used. Obtained final model has been proven to ability of modeling different types of foods with higher accuracy and flexibility for future applications. Obtained FL model has proven its ability to estimate the drying characteristics of apple and strawberry that have not been used during training process with a higher accuracy R2 value of 0.9864.

drying kinetics of foods , estimation , federated learning , Food drying , machine learning

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Faculty of Engineering, Department of Computer Engineering, Kyrgyz-Turkish Manas University, Bishkek, Kazakhstan
Faculty of Engineering, Department of Computer Engineering, Ataturk University, Erzurum, Turkey
Faculty of Engineering, Department of Chemical Engineering, Ataturk University, Erzurum, Turkey

Faculty of Engineering
Faculty of Engineering
Faculty of Engineering

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